cs.AI updates on arXiv.org 07月28日 12:43
Bootstrapped Reward Shaping
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本文提出一种名为BSRS的奖励塑造方法,用于强化学习中稀疏奖励域,通过利用代理当前状态值函数作为潜在函数,提高奖励信号密度,并证明其在Atari套件中能提升训练速度。

arXiv:2501.00989v2 Announce Type: replace-cross Abstract: In reinforcement learning, especially in sparse-reward domains, many environment steps are required to observe reward information. In order to increase the frequency of such observations, "potential-based reward shaping" (PBRS) has been proposed as a method of providing a more dense reward signal while leaving the optimal policy invariant. However, the required "potential function" must be carefully designed with task-dependent knowledge to not deter training performance. In this work, we propose a "bootstrapped" method of reward shaping, termed BSRS, in which the agent's current estimate of the state-value function acts as the potential function for PBRS. We provide convergence proofs for the tabular setting, give insights into training dynamics for deep RL, and show that the proposed method improves training speed in the Atari suite.

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强化学习 奖励塑造 BSRS方法
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